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Model-based fault detection in multi-sensor measurement systems

机译:多传感器测量系统中基于模型的故障检测

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In the process and manufacturing industries, there has been a large push to produce higher quality products, reduce product rejection rates, and satisfy increasingly forceful safety and environmental regulations. Hence, the increasing complexity of measurement systems inside modern industrial processes with a rising number of actuators and sensors demands automatic fault detection algorithms which can cope with a huge number of variables and high-frequency dynamic data. Indeed, humans are able to classify sensor signals by inspecting by-passing data, but these classifications are very time-consuming and also have deficiencies because of underlying vague expert knowledge consisting of low-dimensional mostly linguistic relationships. In this paper we propose a model-based fault detection algorithm, which is generic in the sense that any model correctly describing a functional dependency inside a system can be enclosed easily almost without adjusting any thresholds or other essential parameters. This advanced 'residual view' fault detection includes aspects for incorporating sensor inaccuracies and model qualities as well as processing further normalized residuals for obtaining fault probabilities. Validation results with respect to data coming from engine test benches are included.
机译:在工艺和制造业,有大量推动生产更高质量的产品,降低产品拒收率,满足越来越强大的安全和环境法规。因此,具有升高的执行器和传感器的现代工业过程中测量系统内部的复杂性需要自动故障检测算法,其可以应对大量变量和高频动态数据。实际上,人类能够通过检查旁通数据来分类传感器信号,但这些分类非常耗时,并且由于潜在的模糊专家知识包括低维主要的语言关系,因此具有缺陷。在本文中,我们提出了一种基于模型的故障检测算法,这是通用的,即任何正确描述系统内的功能依赖性的任何模型都可以容易地封闭,而无需调整任何阈值或其他基本参数。这种高级的“残差”故障检测包括结合传感器不准确性和模型质量的方面以及处理进一步规范化的残差,以获得故障概率。包括来自发动机测试台的数据的验证结果。

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